Sustainability Data Analyst

ISS Facility Services UK
Bristol
5 months ago
Applications closed

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SUSTAINABILITY DATA ANALYST


Location: London, E14 9SH

Hours of work: 40

Contract Type: Permanent


The role of Sustainability Data Analyst offers an exciting opportunity to play a pivotal part in advancing sustainability efforts under the client contract.


This position involves collecting, managing, analysing, and reporting sustainability-related data across diverse subject areas, including utility metering, transport-related CO2 emissions, procurement emissions, single-use plastic assessments, climate change risk, lifecycle analysis, and biodiversity monitoring.


Job Description

Key responsibilities include establishing and maintaining robust data flows across ISS functions, ensuring data quality, and developing advanced analytical and reporting tools for professional and timely reporting.


This role also involves preparing monthly client reports and collaborating closely with ISS business functions and the customer’s sustainability analysts.


ISS is committed to developing its team members, offering opportunities to enhance skill sets through its apprenticeship scheme, making this an excellent entry point into a market-leading organisation.


The position sits within the growing government sector and aligns with ISS's journey toward carbon reporting and greater sustainability, allowing the successful candidate to contribute meaningfully to this transformative process.


This is more than just a data role; it is an opportunity to make a tangible impact. With the chance to engage in biodiversity projects and sustainability initiatives, this role is ideal for someone with strong data management skills, a passion for sustainability, a proactive work ethic, and a desire to grow in a meaningful and innovative field.


Key Responsibilities

  • Provide monthly carbon emission reporting to the client in compliance with government requirements
  • Collect, analyse, cleanse, and present data to ensure accuracy and reliability for client reporting
  • Develop and maintain data pathways within ISS and supply chains, ensuring clean and accurate data
  • Collaborate with IT to filter and segregate data, focusing on transport emissions and other carbon-related metrics.
  • Format reports in a clear, client-friendly manner for submission


About You

  • Demonstrable experience in a similar role
  • Either a proven record in carbon and environmental data analysis
  • Experience in Carbon Accounting (Scope 1, 2 and 3)
  • Experience in data analysis and advanced in Excel
  • Degree level or similar in environmental discipline or data analysis professional qualifications.
  • Experience with solutioning data needs
  • Experience with PowerBI (desirable)
  • Professional Membership: Graduate IEMA or other Environmental Body Membership (desirable)


The Company

ISS is a world-leading workplace and facility management company, connecting people and places to make the world work better. Working with customers day by day, side by side, we understand every aspect of the user experience.

Through a unique combination of intelligent solutions, high standards and people who care, to help our customers achieve their purpose, whether it’s hospitals healing patients, businesses producing the next great innovation, or airports bringing passengers home to their families. ISS is committed to doing business the right way, taking its corporate responsibility very seriously. Our passion is people.

We offer you a challenging and exciting career in an organisation with people at its heart. In ISS, everyone has the opportunity to develop, grow and make a difference.


#ISSGreatPeople #ISSTalent #PeopleMakePlace

ISS is proud to be a diverse and inclusive employer.

ISS welcomes all applicants regardless of age, disability, gender identity or gender reassignment, marital or civil partnership status, pregnancy or maternity, race (which includes race, colour, nationality, ethnic or national origin and caste) religion or belief, sex, sexual orientation or educational background

Our passion for inclusivity and diversity makes ISS a more creative, productive and happy place to work.

If you have any further queries regarding this role, please contact the Resourcing Team by emailing

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